In chapter one, Lei Jia, Ph D and Hua Gao, Ph D analyze machine learning applications in small molecule and macromolecule drug discovery and development while comparing the similarities and differences between the two. They also examine their advantages and limitations with the intent to encourage further creative machine learning applications in drug discovery and development. During chapter two, Oscar Claveria, Enric Monte, and Salvador Torra present a study on the extrapolative performance of several machine learning models in a multiple-input multiple-output setting that permits cross-correlation between the inputs. Bojan Ploj, Germano Resconi, and Ali Yaghoubi parallel the solution of a system by logic gates and by a neural network, in which considerations are computed by the designated one step method during chapter three. In chapter four, Loris Nannia, Nicolo Zaffonatoa, Christian Salvatoreb, Isabella Castiglionib, and the Alzheimer’s Disease Neuroimaging Initiative propose a method that could aid in the early diagnosis of Alzheimer’s disease. Afterwards, F. Dornaika and I. Kamal Aldine present and experimentally assess two non-linear data self-representativeness coding schemes based on Hilbert space and column generation. Lastly, Christos Chrysoulas, Grigorios Kalliatakis, and Georgios Stamatiadis give an overview of Apache Hadoop, an open-source software framework used to distribute storage and process big data using the Map Reduce programming model.
Roger Inge & Jan Leif
Machine Learning [PDF ebook]
Advances in Research and Applications
Machine Learning [PDF ebook]
Advances in Research and Applications
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Format PDF ● Pages 210 ● ISBN 9781536125900 ● Editor Roger Inge & Jan Leif ● Publisher Nova Science Publishers ● Published 2017 ● Downloadable 3 times ● Currency EUR ● ID 7217375 ● Copy protection Adobe DRM
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